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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Impacts of snow cover fraction data assimilation on modeled energy and moisture budgets
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Impacts of snow cover fraction data assimilation on modeled energy and moisture budgets

机译:积雪分数数据同化对建模的能量和水分预算的影响

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Two data assimilation (DA) methods, a simple rule-based direct insertion (DI) approach and a one-dimensional ensemble Kalman filter (EnKF) method, are evaluated by assimilating snow cover fraction observations into the Community Land surface Model. The ensemble perturbation needed for the EnKF resulted in negative snowpack biases. Therefore, a correction is made to the ensemble bias using an approach that constrains the ensemble forecasts with a single unperturbed deterministic LSM run. This is shown to improve the final snow state analyses. The EnKF method produces slightly better results in higher elevation locations, whereas results indicate that the DI method has a performance advantage in lower elevation regions. In addition, the two DA methods are evaluated in terms of their overall impacts on the other land surface state variables (e.g., soil moisture) and fluxes (e.g., latent heat flux). The EnKF method is shown to have less impact overall than the DI method and causes less distortion of the hydrological budget. However, the land surface model adjusts more slowly to the smaller EnKF increments, which leads to smaller but slightly more persistent moisture budget errors than found with the DI updates. The DI method can remove almost instantly much of the modeled snowpack, but this also allows the model system to quickly revert to hydrological balance for nonsnowpack conditions. Key Points Snow cover assimilated via direct insertion(DI) and ensemble Kalman filter(EnKF) EnKF method performed better in higher elevations and DI in lower elevations Versus DI, EnKF leads to smaller model impacts but more hydrologic budget errors
机译:通过将积雪覆盖率观测值同化到社区土地表面模型中,评估了两种数据同化(DA)方法,即基于规则的简单直接插入(DI)方法和一维集成卡尔曼滤波(EnKF)方法。 EnKF所需的整体扰动导致负雪堆偏差。因此,使用一种方法使用单个无干扰的确定性LSM运行来约束集合预测,从而对集合偏差进行校正。这表明可以改善最终的积雪状态分析。 EnKF方法在海拔较高的位置产生更好的结果,而结果表明DI方法在海拔较低的区域具有性能优势。另外,根据这两种DA方法对其他土地表面状态变量(例如,土壤湿度)和通量(例如,潜热通量)的总体影响来评估这两种方法。事实证明,EnKF方法总体上比DI方法具有较小的影响,并且对水文预算的影响较小。但是,地面模型对EnKF较小的调整会更缓慢地进行调整,这会导致水分含量预算误差比DI更新所发现的较小,但误差会更大。 DI方法几乎可以立即删除大部分建模的积雪,但是这也允许模型系统针对非积雪条件快速恢复到水文平衡。关键点通过直接插入(DI)和集合卡尔曼滤波(EnKF)吸收的积雪量EnKF方法在较高海拔时表现更好,而在较低海拔中DI相对于DI,EnKF导致模型影响较小,但水文预算误差更大

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